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Chapter 6 Mode locking in the EIF model

B.4 Pushchino model

The Pushchino model [82] is a piecewise linear model of the Fitzhugh-Nagumo model with f(V) and g(V) defined as follow

f(V) =                  −30V, V < V1, γV 0.12, V1 < V < V2, −30(V 1), V > V2, (B.7) g(V, w) = 1 τ(V)(V −w), τ(V) =        2, V < V1, 16.6, V > V1, (B.8) with V1 = 0.12/(30 +γ) and V2 = 30.12/(30 +γ).

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